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Bootstrap Model Aggregation for Distributed Statistical Learning

机译:用于分布式统计学习的Bootstrap模型聚合

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In distributed, or privacy-preserving learning, we are often given a set of probabilistic models estimated from different local repositories, and asked to combine them into a single model that gives efficient statistical estimation. A simple method is to linearly average the parameters of the local models, which, however, tends to be degenerate or not applicable on non-convex models, or models with different parameter dimensions. One more practical strategy is to generate bootstrap samples from the local models, and then learn a joint model based on the combined bootstrap set. Unfortunately, the bootstrap procedure introduces additional noise and can significantly deteriorate the performance. In this work, we propose two variance reduction methods to correct the bootstrap noise, including a weighted M-estimator that is both statistically efficient and practically powerful. Both theoretical and empirical analysis is provided to demonstrate our methods.
机译:在分布式学习或隐私保护学习中,通常会给我们提供一组从不同本地存储库估计的概率模型,然后要求将它们组合成一个可以进行有效统计估计的模型。一种简单的方法是线性平均局部模型的参数,但是,该模型倾向于退化或不适用于非凸模型或具有不同参数维的模型。一种更实用的策略是从局部模型生成引导程序样本,然后基于组合的引导程序集学习联合模型。不幸的是,自举程序会引入额外的噪声,并可能严重降低性能。在这项工作中,我们提出了两种减少方差的方法来校正自举噪声,包括加权的M估计量,该估计量在统计上既有效又实用。提供理论和实证分析以证明我们的方法。

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